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SlowFast Rolling-Unrolling LSTMs for Action Anticipation in Egocentric Videos

Nada Osman, Guglielmo Camporese, Pasquale Coscia, Lamberto Ballan

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Abstract

Action anticipation in egocentric videos is a difficult task due to the inherently multi-modal nature of human actions. Additionally, some actions happen faster or slower than others depending on the actor or surrounding context which could vary each time and lead to different predictions. Based on this idea, we build upon RULSTM architecture, which is specifically designed for anticipating human actions, and propose a novel attention-based technique to evaluate, simultaneously, slow and fast features extracted from three different modalities, namely RGB, optical flow and extracted objects. Two branches process information at different time scales, i.e., frame-rates, and several fusion schemes are considered to improve prediction accuracy. We perform extensive experiments on EpicKitchens55 and EGTEA Gaze+ datasets, and demonstrate that our technique systematically improves the results of RULSTM architecture for Top-5 accuracy metric at different anticipation times.

Topics & Concepts

Computer scienceArtificial intelligenceAnticipation (artificial intelligence)Context (archaeology)Process (computing)Metric (unit)GazeAction (physics)Computer visionTask (project management)RGB color modelModality (human–computer interaction)Operating systemEconomicsPhysicsOperations managementBiologyQuantum mechanicsManagementPaleontologyHuman Pose and Action RecognitionAdvanced Vision and ImagingVideo Surveillance and Tracking Methods